Paper
1 December 2021 Breast cancer diagnosis using SE-DNI model
Xinran Gu, Yurong Liu, Quansen Wang, Yuzhi Zhang
Author Affiliations +
Proceedings Volume 12079, Second IYSF Academic Symposium on Artificial Intelligence and Computer Engineering; 120791J (2021) https://doi.org/10.1117/12.2622893
Event: 2nd IYSF Academic Symposium on Artificial Intelligence and Computer Engineering, 2021, Xi'an, China
Abstract
Breast cancer has long been a life-threatening disease, and the application of digital pathological detection systems on breast cancer detection, which employs convolutional neural networks (CNN), is a milestone in the medical field. For medical testing, higher accuracy means a stronger possibility of saving ones’ life. However, the accuracy of the current study on mammography image classification is not satisfying enough. In this paper, we simplified and improved the current network structure's performance on classifying histopathological images by proposing a new Squeeze and Excitation network DenseNet based improved model (SE-DNI), which is a hierarchical multi-stage process that consists of six layers. We tested three different DenseNet models for feature extraction, and our improved model of DenseNet201 with attention layer (SENet) has the highest test score among all three models we tested, which achieved an accuracy of 99.82% compared with 96.15%, the accuracy of the network that uses a normal DenseNet201 model.
© (2021) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Xinran Gu, Yurong Liu, Quansen Wang, and Yuzhi Zhang "Breast cancer diagnosis using SE-DNI model", Proc. SPIE 12079, Second IYSF Academic Symposium on Artificial Intelligence and Computer Engineering, 120791J (1 December 2021); https://doi.org/10.1117/12.2622893
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KEYWORDS
Breast cancer

RGB color model

Tumor growth modeling

Image classification

Feature extraction

Convolutional neural networks

Data modeling

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